Improving Performance of Facial Biometrics With Quality-Driven Dataset Filtering

Iurii Medvedev, Nuno Gonçalves
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Abstract

Advancements in deep learning techniques and availability of large scale face datasets led to significant performance gains in face recognition in recent years. Modern face recognition algorithms are trained on large-scale in-the-wild face datasets. At the same time, many facial biometric applications rely on controlled image acquisition and enrollment procedures (for instance, document security applications). That is why such face recognition approaches can demonstrate the deficiency of the performance in the target scenario (ICAO-compliant images). However, modern approaches for face image quality estimation may help to mitigate that problem. In this work, we introduce a strategy for filtering training datasets by quality metrics and demonstrate that it can lead to performance improvements in biometric applications that rely on face image modality. We filter the main academic datasets using the proposed filtering strategy and present performance metrics.
用质量驱动的数据集滤波提高面部生物识别性能
近年来,深度学习技术的进步和大规模人脸数据集的可用性导致了人脸识别性能的显著提高。现代人脸识别算法是在大规模的野外人脸数据集上训练的。同时,许多面部生物识别应用程序依赖于受控的图像获取和登记过程(例如,文档安全应用程序)。这就是为什么这种人脸识别方法在目标场景(符合国际民航组织的图像)中表现出性能的不足。然而,人脸图像质量估计的现代方法可能有助于缓解这个问题。在这项工作中,我们介绍了一种通过质量指标过滤训练数据集的策略,并证明它可以提高依赖面部图像模态的生物识别应用的性能。我们使用提出的过滤策略和目前的性能指标过滤主要的学术数据集。
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